It's 48% accurate at guessing male, female, and non-binary. (random guessing is 33.33% accurate)

But I am aware it is biased towards males because of a data diversity issue.

The diversity issues being I collected different post amounts based on each user's account gender.

I plan to fix this in v5.

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